A metaheuristic-based ensemble feature selection framework for cyber threat detection in IoT-enabled networks

Internet of Things (IoT) enabled networks are highly vulnerable to cyber threats due to insecure wireless communication, resource constraint architecture, different types of IoT devices, and a high volume of sensor data being transported across the network. Therefore, IoT-compatible cybersecurity so...

Full description

Saved in:
Bibliographic Details
Published inDecision analytics journal Vol. 7; p. 100206
Main Authors Dey, Arun Kumar, Gupta, Govind P., Sahu, Satya Prakash
Format Journal Article
LanguageEnglish
Published Elsevier Inc 01.06.2023
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:Internet of Things (IoT) enabled networks are highly vulnerable to cyber threats due to insecure wireless communication, resource constraint architecture, different types of IoT devices, and a high volume of sensor data being transported across the network. Therefore, IoT-compatible cybersecurity solutions are required. An intrusion detection system is one of the most common solutions for detecting cyber threats in IoT-enabled networks. However, most of the existing solutions for cyber threat detection suffer from many issues like poor accuracy, high learning complexity, low scalability, and high false positive rate (FPR). We propose a metaheuristic-based intelligent and novel framework for cyber threat detection using ensemble feature selection and classification approaches to overcome these issues. First, a metaheuristic-based ensemble feature selection framework is designed using Binary Gravitational Search Algorithm (BGSA) and Binary Grey Wolf Optimization (BGWO) to get an optimized set of features to avoid the curse of dimensionality for efficient learning. Next, Decision Tree and ensemble learning-based classification techniques such as AdaBoost and Random Forest (RF) are employed separately to detect and classify cyber threats. The UNSW-NB15 dataset assesses the effectiveness of the proposed framework, and its performance is evaluated against recent state-of-the-art frameworks. Based on the result analysis, it is found that the RF outperforms existing modern cyber threats detection methods due to the optimized feature subset (4 features out of 42), maximum accuracy (99.41%), maximum detection rate (99.09%), and maximum F1-score (99.33%) with the lowest FPR (0.03%). •Metaheuristic-based intelligent cyber threat detection framework is proposed using ensemble feature selection and classification technique.•The feature selection model is designed using a binary gravitational search algorithm and binary grey wolf optimization-based metaheuristic techniques.•Ensemble learning-based classification techniques such as AdaBoost and Random Forest are employed to detect and classify cyber threats.•The UNSW-NB15 dataset is used for assessment of the proposed framework’s effectiveness and performance.•The results of the study confirm that the proposed framework outperforms modern cyber threats detection methods.
ISSN:2772-6622
2772-6622
DOI:10.1016/j.dajour.2023.100206